Skip to content

ESIPFed/LakePy

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

LakePy

DOI

LakePy is the pythonic user-centered front-end to the Global Lake Level Database. This package can instantly deliver lake water levels for some 2000+ lakes scattered across the globe. Data comes from three sources (so far!)

Funding for this work comes from the Earth Science Information Partners (ESIP) Winter 2020 Grant

See the funded proposal here

Motivation

Lake level data is incredibly important to federal and local governments, scientists, and citizens. Until now, accessing lake level data involves laborious data-preparation and wrangling. We aim to provide this data quickly and on-demand.

Software Used

Built with

Quickstart

Installation

pip install lakepy

if you are using conda for package management you can still use pip!

Searching the Global Lake Level Database

The database can be searched using a name, a source ("grealm", "hydroweb", or "usgs"), or an identification number . The best practice for searching is to first specify a name.

Let's search for Lake Mead instantiating a Lake() object.

import lakepy as lk
my_lake = lk.search("mead")

If there is more than one Lake matching "Mead", the search function will return a RuntimeWarning and display a table.

"Search Result: 'Mead' has more than 1 Result. Showing the 2 most relevant results. Specify 'id_No' or narrow search name."

id_No source lake_name
0 138 hydroweb Mead
1 1556 usgs MEAD LAKE WEST BAY NEAR WILLARD, WI

We will select id_No 138 corresponding to Lake Mead from HydroWeb's database and re-run our search 1 of 2 ways:

  • Specify the id_No explicitly as a string
my_lake = lk.search(id_No = "138")
  • Specify a name and a source
my_lake = lk.search(name="mead", source="hydroweb", markdown=True)

We highly recommend specifying an id_No whenever possible to avoid issues with similarly named lakes. Either way , the search returns a metadata markdown dataframe

id_No source lake_name basin status country end_date latitude longitude identifier start_date
0 138 hydroweb Mead Colorado research USA 2014-12-29 00:21 36.13 -114.45 L_mead 2000-06-14 10:22

It is important to note that different databases will return different types and amounts of metadata. Currently latitude & longitude are only available from the USGS and HydroWeb databases, but GREALM lakes will soon have them!

Lake() object

The "my_lake" variable is now an object of class Lake() which comes with several attributes

  • name
  • country
  • continent (currently not supported for HydroWeb)
  • source
  • original_id
  • id_No
  • observation_period
  • latitude (currently not supported for G-REALM)
  • longitude (currently not supported for G-REALM)
  • misc_data
  • dataframe
  • data

importantly, my_lake.dataframe and my_lake.data are pandas dataframe instances with associated methods

my_lake.dataframe.describe().to_markdown()
water_level
count 119
mean 342.807
std 7.34547
min 330.75
25% 337.905
50% 342.26
75% 347.555
max 365.43

Plotting

LakePy allows for native time series plotting as well as map-view plots

my_lake.plot_timeseries()

Plotly (default)

Seaborn/Matplotlib

my_lake.plot_timeseries(how='seaborn')

my_lake.plot_mapview()

API Reference

Please refer to the LakePy documentation

Contribute

We would love your help in making this project better. Please refer to our contribution guide to learn how.

Citing LakePy

Please consider citing us if you use LakePy in your research! The recommended citation is:

James Gearon, & John Franey. (2021, January 4). ESIPFed/LakePy v2.1.0 (Version v2.1.0). Zenodo. http://doi.org/10. 5281/zenodo.4415936

Credits

This work is based on funding provided by the ESIP Lab with support from the National Aeronautics and Space Administration (NASA), National Oceanic and Atmospheric Administration (NOAA) and the United States Geologic Survey (USGS). LakePy received additional, generous support in 2021 from Derek Masaki and Farial Shahnaz. Many thanks to them.

License

MIT © James Hooker Gearon & John Franey